HTTP status codes β quick cheat sheet
β 200 OK: request succeeded
π 201 Created: new resource saved
π 204 No Content: success, nothing to return
π 301 Moved Permanently: use new URL
βͺοΈ 302 Found: temporary redirect
π§Ύ 304 Not Modified: use cached version
π 400 Bad Request: invalid input
πͺͺ 401 Unauthorized: missing/invalid auth
π« 403 Forbidden: authenticated but not allowed
β 404 Not Found: resource doesnβt exist
β³ 408 Request Timeout: client took too long
π§― 409 Conflict: state/version clash
π₯ 500 Internal Server Error: server crashed
π οΈ 502 Bad Gateway: upstream failed
πΈοΈ 503 Service Unavailable: overloaded/maintenance
β 504 Gateway Timeout: upstream too slow
tips
β’ return precise codes; donβt default to 200/500
β’ include a machine-readable error body (code, message, details)
β’ never leak stack traces in production
β’ pair 304 with ETag/If-None-Match for caching
β 200 OK: request succeeded
π 201 Created: new resource saved
π 204 No Content: success, nothing to return
π 301 Moved Permanently: use new URL
βͺοΈ 302 Found: temporary redirect
π§Ύ 304 Not Modified: use cached version
π 400 Bad Request: invalid input
πͺͺ 401 Unauthorized: missing/invalid auth
π« 403 Forbidden: authenticated but not allowed
β 404 Not Found: resource doesnβt exist
β³ 408 Request Timeout: client took too long
π§― 409 Conflict: state/version clash
π₯ 500 Internal Server Error: server crashed
π οΈ 502 Bad Gateway: upstream failed
πΈοΈ 503 Service Unavailable: overloaded/maintenance
β 504 Gateway Timeout: upstream too slow
tips
β’ return precise codes; donβt default to 200/500
β’ include a machine-readable error body (code, message, details)
β’ never leak stack traces in production
β’ pair 304 with ETag/If-None-Match for caching
β€2
Don't overwhelm to learn Git,π
Git is only this muchππ
1.Core:
β’ git init
β’ git clone
β’ git add
β’ git commit
β’ git status
β’ git diff
β’ git checkout
β’ git reset
β’ git log
β’ git show
β’ git tag
β’ git push
β’ git pull
2.Branching:
β’ git branch
β’ git checkout -b
β’ git merge
β’ git rebase
β’ git branch --set-upstream-to
β’ git branch --unset-upstream
β’ git cherry-pick
3.Merging:
β’ git merge
β’ git rebase
4.Stashing:
β’ git stash
β’ git stash pop
β’ git stash list
β’ git stash apply
β’ git stash drop
5.Remotes:
β’ git remote
β’ git remote add
β’ git remote remove
β’ git fetch
β’ git pull
β’ git push
β’ git clone --mirror
6.Configuration:
β’ git config
β’ git global config
β’ git reset config
7. Plumbing:
β’ git cat-file
β’ git checkout-index
β’ git commit-tree
β’ git diff-tree
β’ git for-each-ref
β’ git hash-object
β’ git ls-files
β’ git ls-remote
β’ git merge-tree
β’ git read-tree
β’ git rev-parse
β’ git show-branch
β’ git show-ref
β’ git symbolic-ref
β’ git tag --list
β’ git update-ref
8.Porcelain:
β’ git blame
β’ git bisect
β’ git checkout
β’ git commit
β’ git diff
β’ git fetch
β’ git grep
β’ git log
β’ git merge
β’ git push
β’ git rebase
β’ git reset
β’ git show
β’ git tag
9.Alias:
β’ git config --global alias.<alias> <command>
10.Hook:
β’ git config --local core.hooksPath <path>
β Best Telegram channels to get free coding & data science resources
https://t.me/addlist/4q2PYC0pH_VjZDk5
β Free Courses with Certificate:
https://t.me/free4unow_backup
Git is only this muchππ
1.Core:
β’ git init
β’ git clone
β’ git add
β’ git commit
β’ git status
β’ git diff
β’ git checkout
β’ git reset
β’ git log
β’ git show
β’ git tag
β’ git push
β’ git pull
2.Branching:
β’ git branch
β’ git checkout -b
β’ git merge
β’ git rebase
β’ git branch --set-upstream-to
β’ git branch --unset-upstream
β’ git cherry-pick
3.Merging:
β’ git merge
β’ git rebase
4.Stashing:
β’ git stash
β’ git stash pop
β’ git stash list
β’ git stash apply
β’ git stash drop
5.Remotes:
β’ git remote
β’ git remote add
β’ git remote remove
β’ git fetch
β’ git pull
β’ git push
β’ git clone --mirror
6.Configuration:
β’ git config
β’ git global config
β’ git reset config
7. Plumbing:
β’ git cat-file
β’ git checkout-index
β’ git commit-tree
β’ git diff-tree
β’ git for-each-ref
β’ git hash-object
β’ git ls-files
β’ git ls-remote
β’ git merge-tree
β’ git read-tree
β’ git rev-parse
β’ git show-branch
β’ git show-ref
β’ git symbolic-ref
β’ git tag --list
β’ git update-ref
8.Porcelain:
β’ git blame
β’ git bisect
β’ git checkout
β’ git commit
β’ git diff
β’ git fetch
β’ git grep
β’ git log
β’ git merge
β’ git push
β’ git rebase
β’ git reset
β’ git show
β’ git tag
9.Alias:
β’ git config --global alias.<alias> <command>
10.Hook:
β’ git config --local core.hooksPath <path>
β Best Telegram channels to get free coding & data science resources
https://t.me/addlist/4q2PYC0pH_VjZDk5
β Free Courses with Certificate:
https://t.me/free4unow_backup
π2β€1
Here are some essential data science concepts from A to Z:
A - Algorithm: A set of rules or instructions used to solve a problem or perform a task in data science.
B - Big Data: Large and complex datasets that cannot be easily processed using traditional data processing applications.
C - Clustering: A technique used to group similar data points together based on certain characteristics.
D - Data Cleaning: The process of identifying and correcting errors or inconsistencies in a dataset.
E - Exploratory Data Analysis (EDA): The process of analyzing and visualizing data to understand its underlying patterns and relationships.
F - Feature Engineering: The process of creating new features or variables from existing data to improve model performance.
G - Gradient Descent: An optimization algorithm used to minimize the error of a model by adjusting its parameters.
H - Hypothesis Testing: A statistical technique used to test the validity of a hypothesis or claim based on sample data.
I - Imputation: The process of filling in missing values in a dataset using statistical methods.
J - Joint Probability: The probability of two or more events occurring together.
K - K-Means Clustering: A popular clustering algorithm that partitions data into K clusters based on similarity.
L - Linear Regression: A statistical method used to model the relationship between a dependent variable and one or more independent variables.
M - Machine Learning: A subset of artificial intelligence that uses algorithms to learn patterns and make predictions from data.
N - Normal Distribution: A symmetrical bell-shaped distribution that is commonly used in statistical analysis.
O - Outlier Detection: The process of identifying and removing data points that are significantly different from the rest of the dataset.
P - Precision and Recall: Evaluation metrics used to assess the performance of classification models.
Q - Quantitative Analysis: The process of analyzing numerical data to draw conclusions and make decisions.
R - Random Forest: An ensemble learning algorithm that builds multiple decision trees to improve prediction accuracy.
S - Support Vector Machine (SVM): A supervised learning algorithm used for classification and regression tasks.
T - Time Series Analysis: A statistical technique used to analyze and forecast time-dependent data.
U - Unsupervised Learning: A type of machine learning where the model learns patterns and relationships in data without labeled outputs.
V - Validation Set: A subset of data used to evaluate the performance of a model during training.
W - Web Scraping: The process of extracting data from websites for analysis and visualization.
X - XGBoost: An optimized gradient boosting algorithm that is widely used in machine learning competitions.
Y - Yield Curve Analysis: The study of the relationship between interest rates and the maturity of fixed-income securities.
Z - Z-Score: A standardized score that represents the number of standard deviations a data point is from the mean.
Credits: https://t.me/free4unow_backup
Like if you need similar content ππ
A - Algorithm: A set of rules or instructions used to solve a problem or perform a task in data science.
B - Big Data: Large and complex datasets that cannot be easily processed using traditional data processing applications.
C - Clustering: A technique used to group similar data points together based on certain characteristics.
D - Data Cleaning: The process of identifying and correcting errors or inconsistencies in a dataset.
E - Exploratory Data Analysis (EDA): The process of analyzing and visualizing data to understand its underlying patterns and relationships.
F - Feature Engineering: The process of creating new features or variables from existing data to improve model performance.
G - Gradient Descent: An optimization algorithm used to minimize the error of a model by adjusting its parameters.
H - Hypothesis Testing: A statistical technique used to test the validity of a hypothesis or claim based on sample data.
I - Imputation: The process of filling in missing values in a dataset using statistical methods.
J - Joint Probability: The probability of two or more events occurring together.
K - K-Means Clustering: A popular clustering algorithm that partitions data into K clusters based on similarity.
L - Linear Regression: A statistical method used to model the relationship between a dependent variable and one or more independent variables.
M - Machine Learning: A subset of artificial intelligence that uses algorithms to learn patterns and make predictions from data.
N - Normal Distribution: A symmetrical bell-shaped distribution that is commonly used in statistical analysis.
O - Outlier Detection: The process of identifying and removing data points that are significantly different from the rest of the dataset.
P - Precision and Recall: Evaluation metrics used to assess the performance of classification models.
Q - Quantitative Analysis: The process of analyzing numerical data to draw conclusions and make decisions.
R - Random Forest: An ensemble learning algorithm that builds multiple decision trees to improve prediction accuracy.
S - Support Vector Machine (SVM): A supervised learning algorithm used for classification and regression tasks.
T - Time Series Analysis: A statistical technique used to analyze and forecast time-dependent data.
U - Unsupervised Learning: A type of machine learning where the model learns patterns and relationships in data without labeled outputs.
V - Validation Set: A subset of data used to evaluate the performance of a model during training.
W - Web Scraping: The process of extracting data from websites for analysis and visualization.
X - XGBoost: An optimized gradient boosting algorithm that is widely used in machine learning competitions.
Y - Yield Curve Analysis: The study of the relationship between interest rates and the maturity of fixed-income securities.
Z - Z-Score: A standardized score that represents the number of standard deviations a data point is from the mean.
Credits: https://t.me/free4unow_backup
Like if you need similar content ππ
β€4